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A New Pulse Coupled Neural Network (PCNN) for Brain Medical Image Fusion Empowered by Shuffled Frog Leaping Algorithm

机译:新型蛙跳算法实现脑医学图像融合的新型脉冲耦合神经网络(PCNN)

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摘要

Recent research has reported the application of image fusion technologies in medical images in a wide range of aspects, such as in the diagnosis of brain diseases, the detection of glioma and the diagnosis of Alzheimer’s disease. In our study, a new fusion method based on the combination of the shuffled frog leaping algorithm (SFLA) and the pulse coupled neural network (PCNN) is proposed for the fusion of SPECT and CT images to improve the quality of fused brain images. First, the intensity-hue-saturation (IHS) of a SPECT and CT image are decomposed using a non-subsampled contourlet transform (NSCT) independently, where both low-frequency and high-frequency images, using NSCT, are obtained. We then used the combined SFLA and PCNN to fuse the high-frequency sub-band images and low-frequency images. The SFLA is considered to optimize the PCNN network parameters. Finally, the fused image was produced from the reversed NSCT and reversed IHS transforms. We evaluated our algorithms against standard deviation (SD), mean gradient (Ḡ), spatial frequency (SF) and information entropy (E) using three different sets of brain images. The experimental results demonstrated the superior performance of the proposed fusion method to enhance both precision and spatial resolution significantly.
机译:最近的研究报告了图像融合技术在医学图像中的广泛应用,例如在脑疾病的诊断,神经胶质瘤的检测以及阿尔茨海默氏病的诊断中。在我们的研究中,提出了一种基于改组蛙跳算法(SFLA)和脉冲耦合神经网络(PCNN)相结合的新融合方法,用于SPECT和CT图像的融合,以提高融合后的大脑图像的质量。首先,使用非下采样轮廓波变换(NSCT)分别分解SPECT和CT图像的强度-色相饱和度(IHS),并使用NSCT获得低频和高频图像。然后,我们使用SFLA和PCNN的组合来融合高频子带图像和低频图像。 SFLA被认为可以优化PCNN网络参数。最后,融合图像是由反向NSCT和反向IHS转换产生的。我们使用三组不同的大脑图像针对标准差(SD),平均梯度(Ḡ),空间频率(SF)和信息熵(E)评估了我们的算法。实验结果表明,所提出的融合方法具有优越的性能,可以显着提高精度和空间分辨率。

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